Handbook of Intelligent and Sustainable Manufacturing
CRC Press (Verlag)
978-1-032-51983-8 (ISBN)
Intelligent and sustainable manufacturing is a broad category of manufacturing that employs computer-integrated manufacturing, high levels of adaptability and rapid design changes, digital information technology, and more flexible technical workforce training. Other goals sometimes include fast changes in production levels based on demand, optimization of the production system, efficient production, and recyclability. This handbook provides compiled knowledge of intelligent and sustainable manufacturing within the context of Industry 4.0. along with tools, principles, and strategies.
Handbook of Intelligent and Sustainable Manufacturing: Tools, Principles, and Strategies offers recent developments, future outlooks, and advanced and analytical modeling techniques of intelligent and sustainable manufacturing with examples backed up by experimental and numerical data. It bridges the gap between R&D in intelligent and sustainable manufacturing–related fields and presents case studies and solutions alongside social and green environmental impact. The handbook includes a wide range of advanced tools and applications with modeling results and explains how different internet technologies integrate the manufacturing approach with people, products, and complex systems. By encompassing advanced technologies such as digital twins, big data informatics, artificial intelligence, nature-inspired algorithms, IoT, Industry 4.0, simulation approaches, analytical strategies, quality tools, roots and pillars, diagnostic tools, and methodical strategies, this handbook provides the most up-to-date and advanced information source available.
This handbook will help industries and organizations to implement intelligent manufacturing and move towards the sustainability of manufacturing practices. It will also serve as a reference for senior graduate-level courses in mechanical, production, industrial, and aerospace engineering and a value-added asset to libraries of all technical institutions.
Prof. (Dr.) Ajay Kumar is currently serving as a Professor in the Department of Mechanical Engineering in the School of Engineering and Technology, JECRC University, Jaipur, Rajasthan, India. He received his Ph.D. in the field of Advanced Manufacturing and Automation from Guru Jambheshwar University of Science & Technology, Hisar, India after B.Tech. (Hons.) in mechanical engineering and M.Tech. (Distinction) in manufacturing and automation. His areas of research include Biomedical Engineering, Incremental Sheet Forming, Artificial Intelligence, Sustainable Materials, Robotics and Automation, Additive Manufacturing, Mechatronics, Smart Manufacturing, Industry 4.0, Industrial Engineering Systems, Waste Management, and Optimization Techniques. Dr. Kumar has over 80 publications in international journals of repute including SCOPUS, Web of Science and SCI indexed database and refereed international conferences. He has organized various national and international events including an international conference on Mechatronics and Artificial Intelligence (ICMAI-2021) as conference chair. He also organized an international conference on Artificial Intelligence, Advanced Materials, and Mechatronics Systems (AIAMMS-2023) as conference chair. He has more than 20 national and international patents to his credit and has supervised more than 8 M. Tech, and Ph. D. scholars and numerous undergraduate projects/thesis. He has a total of 15 years of experience in teaching and research and have been a Guest Editor of many reputed journals. He has contributed to many international conferences/symposiums as a session chair, expert speaker, and member of the editorial board and has won several proficiency awards during his career, including merit awards and best teacher awards. He has also co-authored and co-edited more than 15 books and proceedings and has authored many in-house course notes, lab manuals, monographs, and invited chapters in books. Dr. Kumar has organized a series of Faculty Development Programs, International Conferences, workshops, and seminars for researchers, Ph.D., UG, and PG-level students and is associated with many research, academic, and professional societies in various capacities. Mr. Parveen is currently serving as an Assistant Professor and Head in the Department of Mechanical Engineering at Rawal Institute of Engineering and Technology, Faridabad, Haryana, India. He is pursuing his Ph.D. from National Institute of Technology, Kurukshetra, Haryana, India. He completed his B.Tech. (Hons.) from Kurukshetra University, Kurukshetra, India and M.Tech. (Distinction) in Manufacturing and Automation from Maharshi Dayanand University, Rohtak, India. He has over 20 publications in international journals of repute including SCOPUS, Web of Science and SCI indexed database and refereed international conferences. He has 8 national and international patents to his credit and has supervised more than 10 M.Tech. scholars and numerous undergraduate projects/theses. Dr. Parveen has a total of 12 years of experience in teaching and research and has co-authored/co-edited several books. His areas of research include Intelligent Manufacturing Systems, Materials, Die less Forming, Design of Automotive systems, Additive Manufacturing, CAD/CAM and artificial Intelligence, Machine Learning and Internet of Things in Manufacturing, and Multi Objective Optimization techniques. He has also organized a series of Faculty Development Programmes, workshops, and seminars for researcher, and UG level students. Dr. Yang Liu received an M.Sc. (Tech.) degree in Telecommunication Engineering and D.Sc. (Tech.) degree in Industrial Management from the University of Vaasa, Finland, in 2005 and 2010, respectively. He is currently a tenured Associate Professor and Doctoral Supervisor with the Department of Management and Engineering, Linköping University, Sweden; a Visiting Faculty with the Department of Production, University of Vaasa, Finland; and a Chair Professor with Jinan University, China. Meanwhile, he is an Adjunct/Visiting Professor at multiple other universities. His research interests include sustainable smart manufacturing, product service innovation, decision support system, competitive advantage, control systems, autonomous robots, signal processing, and pattern recognition. Dr. Liu has authored or co-authored more than 130 peer-reviewed scientific articles and is ranked No.1 among the top authors on “big data analytics in manufacturing.” His publications have appeared in multiple distinguished journals, and some ranked as top 0.1% ESI Hot Papers and top 1% ESI Highly Cited Papers. Rakesh Kumar is currently serving as the Vice President Operations, Sigma Electric Manufacturing Corporation Pvt Ltd, Sigma Engineered Solutions, Jaipur, Rajasthan, India. He received his Master of Science (MS) in Quality Management from BITS-Pilani, India after B.E from same institute. He is also Six Sigma Black Belt certified from ASQ. He has also worked in multinational companies like Asahi Glass, Bawal, India and Rieter Automotive, India. In current company (Sigma) he is leading operations of five world class manufacturing plants. He has worked on improving human efficiencies, Robotics, advanced machining, Automatic loading and unloading, and human less material transferring. He has a total of 20 years of experience in manufacturing industries. He is members of Indian Institute of Foundry (IFEX) and Confederation of Indian Industries (CII). He has contributed to many conferences as a session chair and expert speaker and has won several proficiency awards during his career, including Operations Excellence awards, best Quality award, and the Zero PPM award. He is an Enterprising Leader with a strong record of contributions in streamlining operations & procedures, invigorating businesses, aiming for senior level assignments in Strategic Planning, Operational Excellence, Plant Operations, Business Management, Stakeholder Management, and Team Management with high repute. His areas of experts are Manufacturing Excellence, Industry 4.0, Waste management, and optimization techniques.
1. Human–Robot/Machine Interaction for Sustainable Manufacturing: Industry 5.0 Perspectives. 2. Nature-Inspired Optimization Techniques of Industry 4.0 for Sustainable Manufacturing. 3. Framework for Implementation of Disruptive Emerging ICTs in Intelligent and Sustainable Manufacturing in a Developing Context. 4. Digital Twins and IoT for Sustainable Manufacturing: A Survey of Current Practices and Future Directions. 5. Overview of Cyber Security in Intelligent and Sustainable Manufacturing. 6. Service Quality Improvement Using Fuzzy Inference Systems and Genetic Algorithm. 7. Identifying and Prioritizing Quality 4.0 Practices in Sustainable Manufacturing Using Rough Number-Based AHP-MABAC. 8. Intelligent Manufacturing in the Context of Industry 4.0 in Belarus: Overview and Perspectives. 9. Investigation of the Chip Reduction Coefficient of X-625 Using Coated Tools. 10. Effect of ECM, Hard Turning, and Deep Cryogenic on Properties of AISI S-1 Tool Steel. 11. A Study on Adoption of Information and Communication Tools in Emergency Disaster Management. 12. Optimization of Process Parameters of Counterbore Hole Made on Workpiece of Al-6061 Using DOE and MCDM Techniques. 13. Application of IoT and Artificial Intelligence in Smart Manufacturing: Towards Industry 4.0. 14. Intelligent Manufacturing in the Financial Sector: Applications in Asset Management and Trading. 15. Machine Learning Applications in Industry 4.0: Opportunities and Challenges. 16. Intelligent and Sustainable Manufacturing Applications in the Automotive Industry.
Erscheinungsdatum | 11.07.2024 |
---|---|
Reihe/Serie | Advancements in Intelligent and Sustainable Technologies and Systems |
Zusatzinfo | 71 Tables, black and white; 68 Line drawings, black and white; 5 Halftones, black and white; 73 Illustrations, black and white |
Verlagsort | London |
Sprache | englisch |
Maße | 156 x 234 mm |
Gewicht | 852 g |
Themenwelt | Mathematik / Informatik ► Informatik ► Datenbanken |
Informatik ► Theorie / Studium ► Künstliche Intelligenz / Robotik | |
Technik ► Umwelttechnik / Biotechnologie | |
ISBN-10 | 1-032-51983-5 / 1032519835 |
ISBN-13 | 978-1-032-51983-8 / 9781032519838 |
Zustand | Neuware |
Haben Sie eine Frage zum Produkt? |
aus dem Bereich